GRT_LABELLED_REGRESSION_DATA_FILE_V1.0
DatasetName: NOT_SET
InfoText: 
NumInputDimensions: 2
NumTargetDimensions: 3
TotalNumTrainingExamples: 367
UseExternalRanges: 0
LabelledRegressionData:
91	50	0	0	0
91	50	0	0	0
91	49	0	0	0
91	49	0	0	0
91	46	0	0	0
91	41	0	0	0
91	37	0	0	0
89	35	0	0	0
83	32	0	0	0
74	29	0	0	0
62	27	0	0	0
54	25	0	0	0
45	25	0	0	0
35	27	0	0	0
26	35	0	0	0
20	44	0	0	0
19	57	0	0	0
22	73	0	0	0
44	95	0	0	0
74	110	0	0	0
101	112	0	0	0
119	110	0	0	0
129	100	0	0	0
132	85	0	0	0
130	75	0	0	0
118	66	0	0	0
101	56	0	0	0
83	52	0	0	0
64	51	0	0	0
55	53	0	0	0
47	63	0	0	0
47	83	0	0	0
54	103	0	0	0
66	116	0	0	0
82	123	0	0	0
99	123	0	0	0
110	110	0	0	0
116	94	0	0	0
117	81	0	0	0
113	71	0	0	0
101	65	0	0	0
91	63	0	0	0
80	62	0	0	0
68	62	0	0	0
57	62	0	0	0
46	64	0	0	0
42	76	0	0	0
42	103	0	0	0
47	125	0	0	0
58	135	0	0	0
73	136	0	0	0
90	128	0	0	0
100	107	0	0	0
102	86	0	0	0
100	72	0	0	0
93	64	0	0	0
85	57	0	0	0
79	49	0	0	0
70	43	0	0	0
62	40	0	0	0
56	40	0	0	0
52	40	0	0	0
52	41	0	0	0
53	42	0	0	0
58	41	0	0	0
65	34	0	0	0
67	30	0	0	0
65	27	0	0	0
57	23	0	0	0
47	21	0	0	0
39	20	0	0	0
32	20	0	0	0
29	21	0	0	0
24	31	0	0	0
22	46	0	0	0
24	69	0	0	0
39	101	0	0	0
48	120	0	0	0
58	135	0	0	0
72	138	0	0	0
91	137	0	0	0
108	124	0	0	0
119	106	0	0	0
124	86	0	0	0
125	68	0	0	0
120	56	0	0	0
112	49	0	0	0
99	44	0	0	0
83	43	0	0	0
65	43	0	0	0
58	43	0	0	0
58	43	0	0	0
58	43	0	0	0
58	43	0	0	0
58	43	0	0	0
58	43	0	0	0
56	49	0	0	0
66	59	0	0	0
79	70	0	0	0
95	76	0	0	0
113	73	0	0	0
127	62	0	0	0
133	53	0	0	0
135	48	0	0	0
135	47	0	0	0
129	43	0	0	0
118	39	0	0	0
108	36	0	0	0
101	33	0	0	0
92	29	0	0	0
87	25	0	0	0
82	23	0	0	0
77	21	0	0	0
69	19	0	0	0
62	19	0	0	0
55	19	0	0	0
44	25	0	0	0
33	39	0	0	0
28	53	0	0	0
23	70	0	0	0
23	87	0	0	0
24	108	0	0	0
33	125	0	0	0
47	138	0	0	0
59	145	0	0	0
82	146	0	0	0
105	136	0	0	0
115	121	0	0	0
120	103	0	0	0
120	90	0	0	0
118	78	0	0	0
112	70	0	0	0
101	67	0	0	0
84	67	0	0	0
70	76	0	0	0
56	92	0	0	0
53	110	0	0	0
57	118	0	0	0
86	132	0	0	0
107	134	0	0	0
121	133	0	0	0
127	127	0	0	0
137	100	0	0	0
138	87	0	0	0
136	78	0	0	0
126	70	0	0	0
116	65	0	0	0
104	62	0	0	0
97	62	0	0	0
82	69	0	0	0
78	76	0	0	0
76	98	0	0	0
89	109	0	0	0
104	112	0	0	0
110	110	0	0	0
118	98	0	0	0
121	83	0	0	0
120	71	0	0	0
112	63	0	0	0
99	55	0	0	0
69	39	0	0	0
62	34	0	0	0
50	27	0	0	0
46	27	0	0	0
44	30	0	0	0
42	36	0	0	0
40	53	0	0	0
40	72	0	0	0
42	88	0	0	0
46	100	0	0	0
52	104	0	0	0
64	105	0	0	0
76	97	0	0	0
84	82	0	0	0
89	68	0	0	0
89	58	0	0	0
83	51	0	0	0
78	50	0	0	0
70	50	0	0	0
66	50	0	0	0
551	566	1	2	-1
554	564	1	2	-1
556	558	1	2	-1
559	547	1	2	-1
561	529	1	2	-1
559	510	1	2	-1
547	491	1	2	-1
533	480	1	2	-1
518	475	1	2	-1
499	473	1	2	-1
482	473	1	2	-1
470	482	1	2	-1
465	497	1	2	-1
470	521	1	2	-1
499	544	1	2	-1
522	552	1	2	-1
539	552	1	2	-1
548	543	1	2	-1
552	529	1	2	-1
552	512	1	2	-1
545	494	1	2	-1
530	481	1	2	-1
507	470	1	2	-1
480	469	1	2	-1
454	476	1	2	-1
439	489	1	2	-1
435	503	1	2	-1
441	524	1	2	-1
470	547	1	2	-1
499	558	1	2	-1
522	561	1	2	-1
535	550	1	2	-1
542	541	1	2	-1
544	528	1	2	-1
540	515	1	2	-1
518	499	1	2	-1
488	489	1	2	-1
457	488	1	2	-1
434	490	1	2	-1
417	499	1	2	-1
406	509	1	2	-1
402	523	1	2	-1
409	540	1	2	-1
430	554	1	2	-1
458	561	1	2	-1
490	564	1	2	-1
517	564	1	2	-1
533	555	1	2	-1
542	541	1	2	-1
544	523	1	2	-1
543	507	1	2	-1
538	498	1	2	-1
528	489	1	2	-1
511	480	1	2	-1
491	476	1	2	-1
463	476	1	2	-1
443	485	1	2	-1
429	495	1	2	-1
421	507	1	2	-1
421	521	1	2	-1
431	541	1	2	-1
459	561	1	2	-1
487	568	1	2	-1
516	569	1	2	-1
540	564	1	2	-1
555	554	1	2	-1
565	540	1	2	-1
566	525	1	2	-1
564	515	1	2	-1
558	507	1	2	-1
549	502	1	2	-1
530	495	1	2	-1
506	491	1	2	-1
482	491	1	2	-1
463	495	1	2	-1
451	502	1	2	-1
444	509	1	2	-1
441	521	1	2	-1
443	537	1	2	-1
454	551	1	2	-1
472	561	1	2	-1
496	563	1	2	-1
519	561	1	2	-1
540	543	1	2	-1
554	522	1	2	-1
560	502	1	2	-1
560	490	1	2	-1
556	478	1	2	-1
544	472	1	2	-1
526	468	1	2	-1
501	468	1	2	-1
472	475	1	2	-1
450	490	1	2	-1
438	505	1	2	-1
434	519	1	2	-1
445	535	1	2	-1
473	549	1	2	-1
505	556	1	2	-1
538	557	1	2	-1
558	546	1	2	-1
569	534	1	2	-1
573	519	1	2	-1
573	501	1	2	-1
564	484	1	2	-1
552	473	1	2	-1
538	470	1	2	-1
519	470	1	2	-1
498	475	1	2	-1
481	488	1	2	-1
471	502	1	2	-1
468	520	1	2	-1
475	542	1	2	-1
497	558	1	2	-1
538	566	1	2	-1
563	564	1	2	-1
577	548	1	2	-1
581	539	1	2	-1
585	515	1	2	-1
581	502	1	2	-1
567	491	1	2	-1
548	483	1	2	-1
530	482	1	2	-1
507	487	1	2	-1
490	501	1	2	-1
483	512	1	2	-1
481	523	1	2	-1
489	539	1	2	-1
510	549	1	2	-1
531	553	1	2	-1
539	553	1	2	-1
555	543	1	2	-1
570	520	1	2	-1
572	504	1	2	-1
561	486	1	2	-1
555	481	1	2	-1
535	468	1	2	-1
504	467	1	2	-1
495	470	1	2	-1
476	492	1	2	-1
473	498	1	2	-1
472	515	1	2	-1
493	532	1	2	-1
510	542	1	2	-1
549	548	1	2	-1
558	545	1	2	-1
573	523	1	2	-1
575	513	1	2	-1
575	496	1	2	-1
559	481	1	2	-1
552	480	1	2	-1
526	479	1	2	-1
494	486	1	2	-1
468	498	1	2	-1
455	508	1	2	-1
453	517	1	2	-1
458	527	1	2	-1
484	541	1	2	-1
516	547	1	2	-1
542	548	1	2	-1
558	539	1	2	-1
569	523	1	2	-1
572	506	1	2	-1
569	488	1	2	-1
557	474	1	2	-1
547	468	1	2	-1
535	467	1	2	-1
516	470	1	2	-1
496	483	1	2	-1
484	495	1	2	-1
481	514	1	2	-1
507	540	1	2	-1
541	559	1	2	-1
566	564	1	2	-1
580	554	1	2	-1
588	529	1	2	-1
590	502	1	2	-1
585	483	1	2	-1
566	464	1	2	-1
530	448	1	2	-1
517	448	1	2	-1
498	450	1	2	-1
481	467	1	2	-1
476	489	1	2	-1
476	504	1	2	-1
486	509	1	2	-1
491	509	1	2	-1
491	509	1	2	-1
